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In this video, we prove the Rank-Nullity Theorem by breaking down the fundamental concepts of vector spaces and linear maps, including rank, kernel, nullity, and basis transformation. Follow along with the conversation and the on-screen notes to finally understand how a matrix transforms vector space. Timestamps: 0:00 Introduction: What does a matrix do to a vector space? 0:22 Reviewing the basics: The Image of a Subspace 1:29 Defining Rank: What is the dimension of the image? 2:30 Understanding how dimension changes with a linear map 3:20 Connecting matrices and linear maps 4:36 Introducing the "Lost Dimension": The Kernel and Nullity 5:18 The Rank-Nullity Theorem Explained 5:42 Walking through the proof step-by-step 8:20 Example 1: Finding the basis and dimension of a kernel 9:24 Final thoughts and conclusion #LinearAlgebra #RankNullityTheorem #Proof #MathExplained #CollegeMath #KernelOfAMatrix #MathTutorial #StudyingMath #Algebra #VectorSpaces #Dimensions #Kernel #Nullity ===================================================================== I teach undergraduate-level maths, including calculus, linear algebra, probability, statistics, stochastic processes, functional analysis, and algebra, emphasizing rigorous definitions and proofs.